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首页> 外文期刊>EJNMMI Research >Partial volume correction of brain PET studies using iterative deconvolution in combination with HYPR denoising
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Partial volume correction of brain PET studies using iterative deconvolution in combination with HYPR denoising

机译:迭代反卷积结合HYPR去噪对大脑P​​ET研究的部分体积校正

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Accurate quantification of PET studies depends on the spatial resolution of the PET data. The commonly limited PET resolution results in partial volume effects (PVE). Iterative deconvolution methods (IDM) have been proposed as a means to correct for PVE. IDM improves spatial resolution of PET studies without the need for structural information (e.g. MR scans). On the other hand, deconvolution also increases noise, which results in lower signal-to-noise ratios (SNR). The aim of this study was to implement IDM in combination with HighlY constrained back-PRojection (HYPR) denoising to mitigate poor SNR properties of conventional IDM. An anthropomorphic Hoffman brain phantom was filled with an [18F]FDG solution of ~25?kBq?mL?1 and scanned for 30?min on a Philips Ingenuity TF PET/CT scanner (Philips, Cleveland, USA) using a dynamic brain protocol with various frame durations ranging from 10 to 300?s. Van Cittert IDM was used for PVC of the scans. In addition, HYPR was used to improve SNR of the dynamic PET images, applying it both before and/or after IDM. The Hoffman phantom dataset was used to optimise IDM parameters (number of iterations, type of algorithm, with/without HYPR) and the order of HYPR implementation based on the best average agreement of measured and actual activity concentrations in the regions. Next, dynamic [11C]flumazenil (five healthy subjects) and [11C]PIB (four healthy subjects and four patients with Alzheimer’s disease) scans were used to assess the impact of IDM with and without HYPR on plasma input-derived distribution volumes (V T) across various regions of the brain. In the case of [11C]flumazenil scans, Hypr-IDM-Hypr showed an increase of 5 to 20% in the regional V T whereas a 0 to 10% increase or decrease was seen in the case of [11C]PIB depending on the volume of interest or type of subject (healthy or patient). References for these comparisons were the V Ts from the PVE-uncorrected scans. IDM improved quantitative accuracy of measured activity concentrations. Moreover, the use of IDM in combination with HYPR (Hypr-IDM-Hypr) was able to correct for PVE without increasing noise.
机译:PET研究的准确量化取决于PET数据的空间分辨率。通常有限的PET分辨率会导致部分体积效应(PVE)。已经提出了迭代解卷积方法(IDM)作为校正PVE的方法。 IDM无需结构信息(例如MR扫描)即可提高PET研究的空间分辨率。另一方面,反卷积也会增加噪声,从而导致较低的信噪比(SNR)。这项研究的目的是将IDM与HighlY约束反推(HYPR)去噪结合使用,以减轻常规IDM较差的SNR特性。用约25?kBq?mL?1的[18F] FDG溶液填充拟人化的霍夫曼脑模型,并使用动态脑方案在Philips Ingenuity TF PET / CT扫描仪(Philips,美国克利夫兰)上扫描30分钟。帧持续时间从10到300?s不等。 Van Cittert IDM用于PVC扫描。此外,在IDM之前和/或之后将HYPR用于改善动态PET图像的SNR。霍夫曼幻象数据集用于根据区域内实测和实际活动浓度的最佳平均一致性,优化IDM参数(迭代次数,算法类型,有无HYPR)和HYPR实施的顺序。接下来,使用动态[11C]氟马西尼(五名健康受试者)和[11C] PIB(四名健康受试者和四名阿尔茨海默氏病患者)扫描来评估IDH(伴有HYPR和不伴有HYPR)对血浆输入来源的分布量(VT)的影响)遍及大脑的各个区域。在[11C]氟马西尼扫描的情况下,Hypr-IDM-Hypr显示区域性室速增加5至20%,而在[11C] PIB的情况下视体积而定,增加或减少0至10%兴趣或主题类型(健康或患者)。这些比较的参考是未经PVE校正的扫描的V Ts。 IDM提高了所测活动浓度的定量准确性。此外,将IDM与HYPR(Hypr-IDM-Hypr)结合使用能够校正PVE,而不会增加噪声。

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